Predictive Modeling of Expressed Emotions in Music Using Pairwise Comparisons
نویسندگان
چکیده
We introduce a two-alternative forced-choice (2AFC) experimental paradigm to quantify expressed emotions in music using the arousal and valence (AV) dimensions. A wide range of well-known audio features are investigated for predicting the expressed emotions in music using learning curves and essential baselines. We furthermore investigate the scalability issues of using 2AFC in quantifying emotions expressed in music on large-scale music databases. The possibility of dividing the annotation task between multiple individuals, while pooling individuals’ comparisons is investigated by looking at the subjective differences of ranking emotion in the AV space. We find this to be problematic due to the large variation in subjects’ rankings of excerpts. Finally, solving scalability issues by reducing the number of pairwise comparisons is analyzed. We compare two active learning schemes to selecting comparisons at random by using learning curves. We show that a suitable predictive model of expressed valence in music can be achieved from only 15% of the total number of comparisons when using the Expected Value of Information (EVOI) active learning scheme. For the arousal dimension we require 9% of the total number of comparisons.
منابع مشابه
Modeling Expressed Emotions in Music using Pairwise Comparisons
We introduce a two-alternative forced-choice experimental paradigm to quantify expressed emotions in music using the two wellknown arousal and valence (AV) dimensions. In order to produce AV scores from the pairwise comparisons and to visualize the locations of excerpts in the AV space, we introduce a flexible Gaussian process (GP) framework which learns from the pairwise comparisons directly. ...
متن کاملModeling Temporal Structure in Music for Emotion Prediction using Pairwise Comparisons
INTRODUCTION This paper addresses the specific hypothesis whether temporal information is essential for predicting expressed emotions in music, as a prototypical example of a cognitive aspect of music. We propose to test this hypothesis using a novel processing pipeline: 1) Extracting audio features for each track resulting in a multivariate ”feature time series”. 2) Using generative models to ...
متن کاملTowards Predicting Expressed Emotion in Music from Pairwise Comparisons
We introduce five regression models for the modeling of expressed emotion in music using data obtained in a two alternative forced choice listening experiment. The predictive performance of the proposed models is compared using learning curves, showing that all models converge to produce a similar classification error. The predictive ranking of the models is compared using Kendall’s τ rank corr...
متن کاملThe Effect of Different Break Activities on Eye-Hand Coordination in Female Students
People face breaks in their daily tasks that effect on their daily life. The present study was designed to evaluate the effect of different break activities on eye-hand coordination in female students. In the current experimental study conducted with repeated measures design, 36 high school female students with age range 13-15 years old were conveniently selected. In order to evaluate participa...
متن کاملTimbre Features and Music Emotion in Plucked String, Mallet Percussion, and Keyboard Tones
Music conveys emotions by means of pitch, rhythm, loudness, and many other musical qualities. It was recently confirmed that timbre also has direct association with emotion, for example, that a horn is perceived as sad and a trumpet heroic in even isolated instrument tones. As previous work has mainly focused on sustaining instruments such as bowed strings and winds, this paper presents an expe...
متن کامل